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Model-based Constrained Reinforcement Learning using Generalized Control Barrier Function

Haitong Ma, Jianyu Chen, Shengbo Eben, Ziyu Lin, Yang Guan, Yangang Ren, Sifa Zheng

20212021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)49 citationsDOI

Abstract

Model information can be used to predict future trajectories, so it has huge potential to avoid dangerous regions when applying reinforcement learning (RL) on real-world tasks, like autonomous driving. However, existing studies mostly use model-free constrained RL, which causes inevitable constraint violations. This paper proposes a model-based feasibility enhancement technique of constrained RL, which enhances the feasibility of policy using generalized control barrier function (GCBF) defined on the distance to constraint boundary. By using the model information, the policy can be optimized safely without violating actual safety constraints, and the sample efficiency is increased. The infeasibility in solving the constrained policy gradient is handled by an adaptive coefficient mechanism. We evaluate the proposed method in both simulations and real vehicle experiments in a complex autonomous driving collision avoidance task. The proposed method achieves up to four times fewer constraint violations and converges 3.36 times faster than baseline constrained RL approaches.

Topics & Concepts

Reinforcement learningConstraint (computer-aided design)Computer scienceMathematical optimizationCollision avoidanceBoundary (topology)Function (biology)Task (project management)Time constraintControl (management)CollisionControl theory (sociology)Artificial intelligenceMathematicsEngineeringMathematical analysisBiologyPolitical scienceEvolutionary biologyGeometryComputer securityLawSystems engineeringReinforcement Learning in RoboticsAutonomous Vehicle Technology and SafetyTraffic control and management
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